A Modified Algorithm for the Computation of the Covariance Matrix Implied by a Structural Recursive Model with Latent Variables Using the Finite Iterative Method

M’barek Iaousse, Amal Hmimou, Zouhair El Hadri, Yousfi El Kettani
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引用次数: 5

Abstract

Structural Equation Modeling (SEM) is a statistical technique that assesses a hypothesized causal model byshowing whether or not, it fits the available data. One of the major steps in SEM is the computation of the covariance matrix implied by the specified model. This matrix is crucial in estimating the parameters, testing the validity of the model and, make useful interpretations. In the present paper, two methods used for this purpose are presented: the J¨oreskog’s formula and the finite iterative method. These methods are characterized by the manner of the computation and based on some apriori assumptions. To make the computation more simplistic and the assumptions less restrictive, a new algorithm for the computation of the implied covariance matrix is introduced. It consists of a modification of the finite iterative method. An illustrative example of the proposed method is presented. Furthermore, theoretical and numerical comparisons between the exposed methods with the proposed algorithm are discussed and illustrated
用有限迭代法计算隐变量结构递推模型隐含协方差矩阵的改进算法
结构方程建模(SEM)是一种统计技术,通过显示是否符合现有数据来评估假设的因果模型。SEM的主要步骤之一是计算指定模型所隐含的协方差矩阵。这个矩阵在估计参数、测试模型的有效性和做出有用的解释方面是至关重要的。在本文中,提出了用于此目的的两种方法:J¨oreskog公式和有限迭代法。这些方法的特点是计算方式和基于一些先验假设。为了使计算更简单,假设约束更少,引入了一种计算隐含协方差矩阵的新算法。它是对有限迭代法的一种改进。最后给出了该方法的一个实例。此外,本文还讨论和说明了已暴露方法与所提出算法之间的理论和数值比较
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